Resumo (PT):
Abstract (EN):
Wildfires are affecting natural ecosystems worldwide, causing economic and human
losses and exacerbated by climate change. Models of fire severity and fire susceptibility are crucial
tools for fire monitoring. This case study analyses a fire event on 3 September 2019 in Vilcabamba
parish, Loja province, Ecuador. This article aims to assess the severity and susceptibility of a fire
through spectral indices and multi-criteria methods for establishing a fire action plan proposal. The
methodology comprises the following: (i) the acquisition of Sentinel-2A products for the calculation
of spectral indices; (ii) a fire severity model using differentiated indices (dNBR and dNDVI) and a fire
susceptibility model using the Analytic Hierarchy Process (AHP) method; (iii) model validation using
Logistic Regression (LR) and Non-metric Multidimensional Scaling (NMDS) algorithms; (iv) the
proposal of an action plan for fire management. The Normalised Burn Ratio (NBR) index revealed
that 10.98% of the fire perimeter has burned areas with moderate-high severity in post-fire scenes
(2019) and decreased to 0.01% for post-fire scenes in 2021. The Normalised Difference Vegetation
Index (NDVI) identified 67.28% of the fire perimeter with null photosynthetic activity in the post-fire
scene (2019) and 5.88% in the post-fire scene (2021). The Normalised Difference Moisture Index
(NDMI) applied in the pre-fire scene identified that 52.62% has low and dry vegetation (northeast),
and 8.27% has high vegetation cover (southwest). The dNDVI identified 10.11% of unburned areas
and 7.91% using the dNBR. The fire susceptibility model identified 11.44% of the fire perimeter with
null fire susceptibility. These results evidence the vegetation recovery after two years of the fire event.
The models demonstrated excellent performance for fire severity models and were a good fit for the
AHP model. We used the Root Mean Square Error (RMSE) and area under the curve (AUC); dNBR
and dNDVI have an RMSE of 0.006, and the AHP model has an RMSE of 0.032. The AUC = 1.0 for
fire severity models and AUC = 0.6 for fire susceptibility. This study represents a holistic approach by
combining Google Earth Engine (GEE), Geographic Information System (GIS), and remote sensing
tools for proposing a fire action plan that supports decision making. This study provides escape
routes that considered the most significant fire triggers, the AHP, and fire severity approaches for
monitoring wildfires in Andean regions.
Language:
English
Type (Professor's evaluation):
Scientific
No. of pages:
29